Contemporary model for cardiovascular risk prediction in people with type 2 diabetes.

Andre Pascal Kengne, Anushka Patel, Michel Marre, Florence Travert, Michel Lievre, Sophia Zoungas, John Chalmers, Stephen Colagiuri, Diederick E Grobbee, Pavel Hamet, Simon Heller, Bruce Neal, Mark Woodward
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引用次数: 133

Abstract

Background: Existing cardiovascular risk prediction equations perform non-optimally in different populations with diabetes. Thus, there is a continuing need to develop new equations that will reliably estimate cardiovascular disease (CVD) risk and offer flexibility for adaptation in various settings. This report presents a contemporary model for predicting cardiovascular risk in people with type 2 diabetes mellitus.

Design and methods: A 4.5-year follow-up of the Action in Diabetes and Vascular disease: preterax and diamicron-MR controlled evaluation (ADVANCE) cohort was used to estimate coefficients for significant predictors of CVD using Cox models. Similar Cox models were used to fit the 4-year risk of CVD in 7168 participants without previous CVD. The model's applicability was tested on the same sample and another dataset.

Results: A total of 473 major cardiovascular events were recorded during follow-up. Age at diagnosis, known duration of diabetes, sex, pulse pressure, treated hypertension, atrial fibrillation, retinopathy, HbA1c, urinary albumin/creatinine ratio and non-HDL cholesterol at baseline were significant predictors of cardiovascular events. The model developed using these predictors displayed an acceptable discrimination (c-statistic: 0.70) and good calibration during internal validation. The external applicability of the model was tested on an independent cohort of individuals with type 2 diabetes, where similar discrimination was demonstrated (c-statistic: 0.69).

Conclusions: Major cardiovascular events in contemporary populations with type 2 diabetes can be predicted on the basis of routinely measured clinical and biological variables. The model presented here can be used to quantify risk and guide the intensity of treatment in people with diabetes.

2型糖尿病患者心血管风险预测的现代模型。
背景:现有的心血管风险预测方程在不同的糖尿病人群中表现不佳。因此,继续需要开发新的方程,以可靠地估计心血管疾病(CVD)的风险,并提供适应各种环境的灵活性。本报告提出了一种预测2型糖尿病患者心血管风险的现代模型。设计和方法:对糖尿病和血管疾病的行动:preterax和diamicon - mr对照评估(ADVANCE)队列进行4.5年的随访,使用Cox模型估计CVD重要预测因子的系数。使用类似的Cox模型拟合7168名既往无心血管疾病的参与者的4年心血管疾病风险。在同一样本和另一个数据集上测试了模型的适用性。结果:随访期间共记录了473例主要心血管事件。诊断年龄、已知糖尿病病程、性别、脉压、治疗过的高血压、心房颤动、视网膜病变、HbA1c、尿白蛋白/肌酐比值和基线时的非高密度脂蛋白胆固醇是心血管事件的重要预测因子。使用这些预测因子建立的模型在内部验证中显示出可接受的判别(c-统计量:0.70)和良好的校准。该模型的外部适用性在2型糖尿病个体的独立队列中进行了测试,其中显示了类似的歧视(c统计量:0.69)。结论:在常规测量的临床和生物学变量的基础上,可以预测当代2型糖尿病人群的主要心血管事件。这里提出的模型可以用来量化风险和指导糖尿病患者的治疗强度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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